Autoencoder-based Radio Frequency Interference Mitigation For SMAP
Passive Radiometer
- URL: http://arxiv.org/abs/2304.13158v1
- Date: Tue, 25 Apr 2023 21:37:51 GMT
- Title: Autoencoder-based Radio Frequency Interference Mitigation For SMAP
Passive Radiometer
- Authors: Ali Owfi, Fatemeh Afghah
- Abstract summary: Radiometers operating in the 1400-1427 MHz protected frequency band face radio frequency interference (RFI) from terrestrial sources.
This paper proposes an autoencoder-based RFI mitigation method to remove the dominant RFI caused by potential coexistent terrestrial users.
- Score: 6.5358895450258325
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Passive space-borne radiometers operating in the 1400-1427 MHz protected
frequency band face radio frequency interference (RFI) from terrestrial
sources. With the growth of wireless devices and the appearance of new
technologies, the possibility of sharing this spectrum with other technologies
would introduce more RFI to these radiometers. This band could be an ideal
mid-band frequency for 5G and Beyond, as it offers high capacity and good
coverage. Current RFI detection and mitigation techniques at SMAP (Soil
Moisture Active Passive) depend on correctly detecting and discarding or
filtering the contaminated data leading to the loss of valuable information,
especially in severe RFI cases. In this paper, we propose an autoencoder-based
RFI mitigation method to remove the dominant RFI caused by potential coexistent
terrestrial users (i.e., 5G base station) from the received contaminated signal
at the passive receiver side, potentially preserving valuable information and
preventing the contaminated data from being discarded.
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